Application and Methods of Deep Learning in IoT

Authors

  • Chirag Kumar Dilipbhai Patel
  • Dr. Prasadu Peddi

Keywords:

Deep Learning, IOT

Abstract

In this talk, we provide a comprehensive overview of how to use a subset of advanced AI techniques, most specifically Deep Learning (DL), to bolster analytics as well as learning in the IoT URL. First and foremost, we define a development environment that integrates big data designs with deep learning models to promote rapid experimentation. There are three main promises made in the proposal: To begin, it illustrates a big data engineering that facilitates big data assortment in the same way that businesses facilitate deep learning models. Then, the language for creating a data perspective is shown, one that transforms the many streams of large data into a format that can be used by an advanced learning system. Third, it demonstrates the success of the framework by applying the tool to a wide range of deep learning use cases. We provide a generalized basis for a variety of DL architectures using numerical examples. We also evaluate and summarize major published research projects that made use of DL in the IoT context. Wonderful Internet of Things gadgets that have integrated DL into their prior knowledge are often discussed.

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Published

2023-08-26

Issue

Section

Articles

How to Cite

Dilipbhai Patel, C. K., & Peddi, D. P. (2023). Application and Methods of Deep Learning in IoT. International Journal of Advanced Engineering, Management and Science, 9(8). https://journal-repository.com/index.php/ijaems/article/view/6605